Chevron Left
Back to Operations Analytics

Learner Reviews & Feedback for Operations Analytics by University of Pennsylvania

4.7
stars
5,070 ratings

About the Course

This course is designed to impact the way you think about transforming data into better decisions. Recent extraordinary improvements in data-collecting technologies have changed the way firms make informed and effective business decisions. The course on operations analytics, taught by three of Wharton’s leading experts, focuses on how the data can be used to profitably match supply with demand in various business settings. In this course, you will learn how to model future demand uncertainties, how to predict the outcomes of competing policy choices and how to choose the best course of action in the face of risk. The course will introduce frameworks and ideas that provide insights into a spectrum of real-world business challenges, will teach you methods and software available for tackling these challenges quantitatively as well as the issues involved in gathering the relevant data. This course is appropriate for beginners and business professionals with no prior analytics experience....

Top reviews

EW

Apr 26, 2020

Excellente course. Very challenging especially for beginners. The motivation to achieve my final goal of reinventing myself professionally, makes every challenge a welcome experience. Thanks Coursera!

PK

Oct 11, 2019

An exceptionally organized course with sufficient examples, it provides an in depth analysis of the concepts introduced (optimization, decision trees, forecasting, simulations) and of the tools used.

Filter by:

376 - 400 of 958 Reviews for Operations Analytics

By dorothy S

Feb 25, 2019

Amazing course. Great learning from the course especially for beginners.

By Thu H

Aug 18, 2018

I have learnt a lot through the operation analytics course. Thank you <3

By Sitaram C

May 1, 2016

Very thorough and detailed, great examples and professors are very clear

By Bentley H

Jan 25, 2016

This is a very great tool for persons involved in Operations Management.

By Sergei B

Jun 5, 2016

Excellent and interesting course to be combined with Customer Analytics

By Steven C C

Jan 6, 2021

Challenging and mind expanding. Thank you for the valuable knowledge.

By Sumit G

Aug 12, 2019

best course to understand the operation analysis and future prediction

By Ritesh P

May 18, 2018

Learned Optimization and Simulation...A very powerful technique indeed

By Endurance O

Aug 20, 2017

Excellent Course. I will highly recommend this course to my colleagues

By Max B

Jun 1, 2017

Hands on Excel training with useful simulation and optimization tools.

By Isya A R

May 22, 2020

this course is really great, i would like to apply it in my daily job

By Sophia L

Mar 4, 2020

well structured. practical. advanced material is interesting as well.

By Vivekanand S

Jul 26, 2017

Excellent course for understanding the basics of Business Analytics.

By Pierre V

Jun 9, 2016

Found here what I came for : robust tools and practical application.

By Rangel K

May 30, 2016

Very well explained, quality presentations and supporting materials.

By Vasu D

Jan 24, 2016

Guaranteed learning that you can use in your analytics related job!!

By Howard C

May 12, 2021

What may look straight forward and basic is actually quite powerful

By Henrique B

Jun 28, 2020

Very cool course. Based mainly in probability and basic statistics.

By M G V

Nov 3, 2017

All the tutorials and the given exercises are easily understandable

By Tobby S

May 7, 2016

I can use this knowledge every day! I highly recommend this course.

By Gani

Feb 6, 2016

A Good course to improve the operational design in an organization.

By Andres P

Mar 3, 2019

Amazing knowledge and fantastic tools to improve analytics skills!

By Gaurav D

Feb 1, 2019

Excellent content and explanation by the respected professors of W

By Ritu J

Apr 1, 2016

The Best course so far in cousera!!! Loved it!!! Thank You so much

By Bojan B

Feb 6, 2016

One of the best Wharton courses where you actually learn something